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Open Source Computer Vision Library
https://opencv.org/
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517 lines
20 KiB
517 lines
20 KiB
""" |
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Stitching sample (advanced) |
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=========================== |
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|
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Show how to use Stitcher API from python. |
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""" |
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|
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# Python 2/3 compatibility |
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from __future__ import print_function |
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|
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import argparse |
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from collections import OrderedDict |
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|
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import cv2 as cv |
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import numpy as np |
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|
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EXPOS_COMP_CHOICES = OrderedDict() |
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EXPOS_COMP_CHOICES['gain_blocks'] = cv.detail.ExposureCompensator_GAIN_BLOCKS |
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EXPOS_COMP_CHOICES['gain'] = cv.detail.ExposureCompensator_GAIN |
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EXPOS_COMP_CHOICES['channel'] = cv.detail.ExposureCompensator_CHANNELS |
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EXPOS_COMP_CHOICES['channel_blocks'] = cv.detail.ExposureCompensator_CHANNELS_BLOCKS |
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EXPOS_COMP_CHOICES['no'] = cv.detail.ExposureCompensator_NO |
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|
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BA_COST_CHOICES = OrderedDict() |
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BA_COST_CHOICES['ray'] = cv.detail_BundleAdjusterRay |
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BA_COST_CHOICES['reproj'] = cv.detail_BundleAdjusterReproj |
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BA_COST_CHOICES['affine'] = cv.detail_BundleAdjusterAffinePartial |
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BA_COST_CHOICES['no'] = cv.detail_NoBundleAdjuster |
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|
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FEATURES_FIND_CHOICES = OrderedDict() |
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try: |
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cv.xfeatures2d_SURF.create() # check if the function can be called |
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FEATURES_FIND_CHOICES['surf'] = cv.xfeatures2d_SURF.create |
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except (AttributeError, cv.error) as e: |
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print("SURF not available") |
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# if SURF not available, ORB is default |
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FEATURES_FIND_CHOICES['orb'] = cv.ORB.create |
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try: |
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FEATURES_FIND_CHOICES['sift'] = cv.xfeatures2d_SIFT.create |
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except AttributeError: |
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print("SIFT not available") |
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try: |
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FEATURES_FIND_CHOICES['brisk'] = cv.BRISK_create |
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except AttributeError: |
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print("BRISK not available") |
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try: |
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FEATURES_FIND_CHOICES['akaze'] = cv.AKAZE_create |
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except AttributeError: |
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print("AKAZE not available") |
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SEAM_FIND_CHOICES = OrderedDict() |
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SEAM_FIND_CHOICES['dp_color'] = cv.detail_DpSeamFinder('COLOR') |
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SEAM_FIND_CHOICES['dp_colorgrad'] = cv.detail_DpSeamFinder('COLOR_GRAD') |
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SEAM_FIND_CHOICES['voronoi'] = cv.detail.SeamFinder_createDefault(cv.detail.SeamFinder_VORONOI_SEAM) |
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SEAM_FIND_CHOICES['no'] = cv.detail.SeamFinder_createDefault(cv.detail.SeamFinder_NO) |
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|
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ESTIMATOR_CHOICES = OrderedDict() |
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ESTIMATOR_CHOICES['homography'] = cv.detail_HomographyBasedEstimator |
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ESTIMATOR_CHOICES['affine'] = cv.detail_AffineBasedEstimator |
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WARP_CHOICES = ( |
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'spherical', |
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'plane', |
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'affine', |
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'cylindrical', |
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'fisheye', |
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'stereographic', |
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'compressedPlaneA2B1', |
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'compressedPlaneA1.5B1', |
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'compressedPlanePortraitA2B1', |
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'compressedPlanePortraitA1.5B1', |
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'paniniA2B1', |
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'paniniA1.5B1', |
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'paniniPortraitA2B1', |
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'paniniPortraitA1.5B1', |
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'mercator', |
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'transverseMercator', |
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) |
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WAVE_CORRECT_CHOICES = OrderedDict() |
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WAVE_CORRECT_CHOICES['horiz'] = cv.detail.WAVE_CORRECT_HORIZ |
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WAVE_CORRECT_CHOICES['no'] = None |
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WAVE_CORRECT_CHOICES['vert'] = cv.detail.WAVE_CORRECT_VERT |
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BLEND_CHOICES = ('multiband', 'feather', 'no',) |
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|
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parser = argparse.ArgumentParser( |
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prog="stitching_detailed.py", description="Rotation model images stitcher" |
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) |
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parser.add_argument( |
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'img_names', nargs='+', |
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help="Files to stitch", type=str |
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) |
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parser.add_argument( |
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'--try_cuda', |
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action='store', |
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default=False, |
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help="Try to use CUDA. The default value is no. All default values are for CPU mode.", |
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type=bool, dest='try_cuda' |
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) |
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parser.add_argument( |
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'--work_megapix', action='store', default=0.6, |
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help="Resolution for image registration step. The default is 0.6 Mpx", |
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type=float, dest='work_megapix' |
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) |
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parser.add_argument( |
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'--features', action='store', default=list(FEATURES_FIND_CHOICES.keys())[0], |
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help="Type of features used for images matching. The default is '%s'." % list(FEATURES_FIND_CHOICES.keys())[0], |
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choices=FEATURES_FIND_CHOICES.keys(), |
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type=str, dest='features' |
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) |
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parser.add_argument( |
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'--matcher', action='store', default='homography', |
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help="Matcher used for pairwise image matching. The default is 'homography'.", |
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choices=('homography', 'affine'), |
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type=str, dest='matcher' |
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) |
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parser.add_argument( |
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'--estimator', action='store', default=list(ESTIMATOR_CHOICES.keys())[0], |
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help="Type of estimator used for transformation estimation. The default is '%s'." % list(ESTIMATOR_CHOICES.keys())[0], |
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choices=ESTIMATOR_CHOICES.keys(), |
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type=str, dest='estimator' |
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) |
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parser.add_argument( |
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'--match_conf', action='store', |
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help="Confidence for feature matching step. The default is 0.3 for ORB and 0.65 for other feature types.", |
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type=float, dest='match_conf' |
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) |
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parser.add_argument( |
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'--conf_thresh', action='store', default=1.0, |
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help="Threshold for two images are from the same panorama confidence.The default is 1.0.", |
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type=float, dest='conf_thresh' |
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) |
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parser.add_argument( |
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'--ba', action='store', default=list(BA_COST_CHOICES.keys())[0], |
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help="Bundle adjustment cost function. The default is '%s'." % list(BA_COST_CHOICES.keys())[0], |
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choices=BA_COST_CHOICES.keys(), |
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type=str, dest='ba' |
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) |
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parser.add_argument( |
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'--ba_refine_mask', action='store', default='xxxxx', |
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help="Set refinement mask for bundle adjustment. It looks like 'x_xxx', " |
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"where 'x' means refine respective parameter and '_' means don't refine, " |
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"and has the following format:<fx><skew><ppx><aspect><ppy>. " |
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"The default mask is 'xxxxx'. " |
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"If bundle adjustment doesn't support estimation of selected parameter then " |
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"the respective flag is ignored.", |
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type=str, dest='ba_refine_mask' |
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) |
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parser.add_argument( |
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'--wave_correct', action='store', default=list(WAVE_CORRECT_CHOICES.keys())[0], |
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help="Perform wave effect correction. The default is '%s'" % list(WAVE_CORRECT_CHOICES.keys())[0], |
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choices=WAVE_CORRECT_CHOICES.keys(), |
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type=str, dest='wave_correct' |
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) |
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parser.add_argument( |
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'--save_graph', action='store', default=None, |
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help="Save matches graph represented in DOT language to <file_name> file.", |
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type=str, dest='save_graph' |
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) |
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parser.add_argument( |
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'--warp', action='store', default=WARP_CHOICES[0], |
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help="Warp surface type. The default is '%s'." % WARP_CHOICES[0], |
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choices=WARP_CHOICES, |
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type=str, dest='warp' |
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) |
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parser.add_argument( |
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'--seam_megapix', action='store', default=0.1, |
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help="Resolution for seam estimation step. The default is 0.1 Mpx.", |
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type=float, dest='seam_megapix' |
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) |
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parser.add_argument( |
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'--seam', action='store', default=list(SEAM_FIND_CHOICES.keys())[0], |
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help="Seam estimation method. The default is '%s'." % list(SEAM_FIND_CHOICES.keys())[0], |
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choices=SEAM_FIND_CHOICES.keys(), |
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type=str, dest='seam' |
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) |
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parser.add_argument( |
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'--compose_megapix', action='store', default=-1, |
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help="Resolution for compositing step. Use -1 for original resolution. The default is -1", |
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type=float, dest='compose_megapix' |
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) |
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parser.add_argument( |
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'--expos_comp', action='store', default=list(EXPOS_COMP_CHOICES.keys())[0], |
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help="Exposure compensation method. The default is '%s'." % list(EXPOS_COMP_CHOICES.keys())[0], |
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choices=EXPOS_COMP_CHOICES.keys(), |
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type=str, dest='expos_comp' |
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) |
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parser.add_argument( |
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'--expos_comp_nr_feeds', action='store', default=1, |
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help="Number of exposure compensation feed.", |
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type=np.int32, dest='expos_comp_nr_feeds' |
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) |
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parser.add_argument( |
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'--expos_comp_nr_filtering', action='store', default=2, |
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help="Number of filtering iterations of the exposure compensation gains.", |
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type=float, dest='expos_comp_nr_filtering' |
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) |
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parser.add_argument( |
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'--expos_comp_block_size', action='store', default=32, |
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help="BLock size in pixels used by the exposure compensator. The default is 32.", |
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type=np.int32, dest='expos_comp_block_size' |
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) |
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parser.add_argument( |
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'--blend', action='store', default=BLEND_CHOICES[0], |
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help="Blending method. The default is '%s'." % BLEND_CHOICES[0], |
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choices=BLEND_CHOICES, |
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type=str, dest='blend' |
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) |
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parser.add_argument( |
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'--blend_strength', action='store', default=5, |
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help="Blending strength from [0,100] range. The default is 5", |
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type=np.int32, dest='blend_strength' |
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) |
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parser.add_argument( |
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'--output', action='store', default='result.jpg', |
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help="The default is 'result.jpg'", |
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type=str, dest='output' |
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) |
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parser.add_argument( |
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'--timelapse', action='store', default=None, |
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help="Output warped images separately as frames of a time lapse movie, " |
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"with 'fixed_' prepended to input file names.", |
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type=str, dest='timelapse' |
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) |
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parser.add_argument( |
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'--rangewidth', action='store', default=-1, |
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help="uses range_width to limit number of images to match with.", |
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type=int, dest='rangewidth' |
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) |
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|
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__doc__ += '\n' + parser.format_help() |
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|
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def get_matcher(args): |
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try_cuda = args.try_cuda |
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matcher_type = args.matcher |
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if args.match_conf is None: |
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if args.features == 'orb': |
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match_conf = 0.3 |
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else: |
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match_conf = 0.65 |
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else: |
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match_conf = args.match_conf |
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range_width = args.rangewidth |
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if matcher_type == "affine": |
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matcher = cv.detail_AffineBestOf2NearestMatcher(False, try_cuda, match_conf) |
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elif range_width == -1: |
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matcher = cv.detail.BestOf2NearestMatcher_create(try_cuda, match_conf) |
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else: |
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matcher = cv.detail.BestOf2NearestRangeMatcher_create(range_width, try_cuda, match_conf) |
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return matcher |
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|
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def get_compensator(args): |
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expos_comp_type = EXPOS_COMP_CHOICES[args.expos_comp] |
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expos_comp_nr_feeds = args.expos_comp_nr_feeds |
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expos_comp_block_size = args.expos_comp_block_size |
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# expos_comp_nr_filtering = args.expos_comp_nr_filtering |
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if expos_comp_type == cv.detail.ExposureCompensator_CHANNELS: |
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compensator = cv.detail_ChannelsCompensator(expos_comp_nr_feeds) |
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# compensator.setNrGainsFilteringIterations(expos_comp_nr_filtering) |
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elif expos_comp_type == cv.detail.ExposureCompensator_CHANNELS_BLOCKS: |
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compensator = cv.detail_BlocksChannelsCompensator( |
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expos_comp_block_size, expos_comp_block_size, |
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expos_comp_nr_feeds |
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) |
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# compensator.setNrGainsFilteringIterations(expos_comp_nr_filtering) |
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else: |
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compensator = cv.detail.ExposureCompensator_createDefault(expos_comp_type) |
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return compensator |
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def main(): |
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args = parser.parse_args() |
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img_names = args.img_names |
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print(img_names) |
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work_megapix = args.work_megapix |
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seam_megapix = args.seam_megapix |
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compose_megapix = args.compose_megapix |
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conf_thresh = args.conf_thresh |
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ba_refine_mask = args.ba_refine_mask |
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wave_correct = WAVE_CORRECT_CHOICES[args.wave_correct] |
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if args.save_graph is None: |
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save_graph = False |
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else: |
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save_graph = True |
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warp_type = args.warp |
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blend_type = args.blend |
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blend_strength = args.blend_strength |
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result_name = args.output |
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if args.timelapse is not None: |
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timelapse = True |
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if args.timelapse == "as_is": |
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timelapse_type = cv.detail.Timelapser_AS_IS |
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elif args.timelapse == "crop": |
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timelapse_type = cv.detail.Timelapser_CROP |
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else: |
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print("Bad timelapse method") |
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exit() |
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else: |
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timelapse = False |
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finder = FEATURES_FIND_CHOICES[args.features]() |
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seam_work_aspect = 1 |
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full_img_sizes = [] |
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features = [] |
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images = [] |
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is_work_scale_set = False |
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is_seam_scale_set = False |
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is_compose_scale_set = False |
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for name in img_names: |
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full_img = cv.imread(cv.samples.findFile(name)) |
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if full_img is None: |
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print("Cannot read image ", name) |
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exit() |
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full_img_sizes.append((full_img.shape[1], full_img.shape[0])) |
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if work_megapix < 0: |
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img = full_img |
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work_scale = 1 |
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is_work_scale_set = True |
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else: |
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if is_work_scale_set is False: |
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work_scale = min(1.0, np.sqrt(work_megapix * 1e6 / (full_img.shape[0] * full_img.shape[1]))) |
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is_work_scale_set = True |
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img = cv.resize(src=full_img, dsize=None, fx=work_scale, fy=work_scale, interpolation=cv.INTER_LINEAR_EXACT) |
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if is_seam_scale_set is False: |
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seam_scale = min(1.0, np.sqrt(seam_megapix * 1e6 / (full_img.shape[0] * full_img.shape[1]))) |
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seam_work_aspect = seam_scale / work_scale |
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is_seam_scale_set = True |
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img_feat = cv.detail.computeImageFeatures2(finder, img) |
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features.append(img_feat) |
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img = cv.resize(src=full_img, dsize=None, fx=seam_scale, fy=seam_scale, interpolation=cv.INTER_LINEAR_EXACT) |
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images.append(img) |
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matcher = get_matcher(args) |
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p = matcher.apply2(features) |
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matcher.collectGarbage() |
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if save_graph: |
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with open(args.save_graph, 'w') as fh: |
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fh.write(cv.detail.matchesGraphAsString(img_names, p, conf_thresh)) |
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indices = cv.detail.leaveBiggestComponent(features, p, conf_thresh) |
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img_subset = [] |
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img_names_subset = [] |
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full_img_sizes_subset = [] |
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for i in range(len(indices)): |
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img_names_subset.append(img_names[indices[i, 0]]) |
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img_subset.append(images[indices[i, 0]]) |
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full_img_sizes_subset.append(full_img_sizes[indices[i, 0]]) |
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images = img_subset |
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img_names = img_names_subset |
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full_img_sizes = full_img_sizes_subset |
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num_images = len(img_names) |
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if num_images < 2: |
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print("Need more images") |
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exit() |
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estimator = ESTIMATOR_CHOICES[args.estimator]() |
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b, cameras = estimator.apply(features, p, None) |
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if not b: |
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print("Homography estimation failed.") |
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exit() |
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for cam in cameras: |
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cam.R = cam.R.astype(np.float32) |
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adjuster = BA_COST_CHOICES[args.ba]() |
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adjuster.setConfThresh(1) |
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refine_mask = np.zeros((3, 3), np.uint8) |
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if ba_refine_mask[0] == 'x': |
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refine_mask[0, 0] = 1 |
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if ba_refine_mask[1] == 'x': |
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refine_mask[0, 1] = 1 |
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if ba_refine_mask[2] == 'x': |
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refine_mask[0, 2] = 1 |
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if ba_refine_mask[3] == 'x': |
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refine_mask[1, 1] = 1 |
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if ba_refine_mask[4] == 'x': |
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refine_mask[1, 2] = 1 |
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adjuster.setRefinementMask(refine_mask) |
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b, cameras = adjuster.apply(features, p, cameras) |
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if not b: |
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print("Camera parameters adjusting failed.") |
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exit() |
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focals = [] |
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for cam in cameras: |
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focals.append(cam.focal) |
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focals.sort() |
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if len(focals) % 2 == 1: |
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warped_image_scale = focals[len(focals) // 2] |
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else: |
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warped_image_scale = (focals[len(focals) // 2] + focals[len(focals) // 2 - 1]) / 2 |
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if wave_correct is not None: |
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rmats = [] |
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for cam in cameras: |
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rmats.append(np.copy(cam.R)) |
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rmats = cv.detail.waveCorrect(rmats, wave_correct) |
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for idx, cam in enumerate(cameras): |
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cam.R = rmats[idx] |
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corners = [] |
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masks_warped = [] |
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images_warped = [] |
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sizes = [] |
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masks = [] |
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for i in range(0, num_images): |
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um = cv.UMat(255 * np.ones((images[i].shape[0], images[i].shape[1]), np.uint8)) |
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masks.append(um) |
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|
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warper = cv.PyRotationWarper(warp_type, warped_image_scale * seam_work_aspect) # warper could be nullptr? |
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for idx in range(0, num_images): |
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K = cameras[idx].K().astype(np.float32) |
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swa = seam_work_aspect |
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K[0, 0] *= swa |
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K[0, 2] *= swa |
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K[1, 1] *= swa |
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K[1, 2] *= swa |
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corner, image_wp = warper.warp(images[idx], K, cameras[idx].R, cv.INTER_LINEAR, cv.BORDER_REFLECT) |
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corners.append(corner) |
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sizes.append((image_wp.shape[1], image_wp.shape[0])) |
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images_warped.append(image_wp) |
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p, mask_wp = warper.warp(masks[idx], K, cameras[idx].R, cv.INTER_NEAREST, cv.BORDER_CONSTANT) |
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masks_warped.append(mask_wp.get()) |
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|
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images_warped_f = [] |
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for img in images_warped: |
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imgf = img.astype(np.float32) |
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images_warped_f.append(imgf) |
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|
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compensator = get_compensator(args) |
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compensator.feed(corners=corners, images=images_warped, masks=masks_warped) |
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|
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seam_finder = SEAM_FIND_CHOICES[args.seam] |
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masks_warped = seam_finder.find(images_warped_f, corners, masks_warped) |
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compose_scale = 1 |
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corners = [] |
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sizes = [] |
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blender = None |
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timelapser = None |
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# https://github.com/opencv/opencv/blob/master/samples/cpp/stitching_detailed.cpp#L725 ? |
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for idx, name in enumerate(img_names): |
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full_img = cv.imread(name) |
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if not is_compose_scale_set: |
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if compose_megapix > 0: |
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compose_scale = min(1.0, np.sqrt(compose_megapix * 1e6 / (full_img.shape[0] * full_img.shape[1]))) |
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is_compose_scale_set = True |
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compose_work_aspect = compose_scale / work_scale |
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warped_image_scale *= compose_work_aspect |
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warper = cv.PyRotationWarper(warp_type, warped_image_scale) |
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for i in range(0, len(img_names)): |
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cameras[i].focal *= compose_work_aspect |
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cameras[i].ppx *= compose_work_aspect |
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cameras[i].ppy *= compose_work_aspect |
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sz = (full_img_sizes[i][0] * compose_scale, full_img_sizes[i][1] * compose_scale) |
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K = cameras[i].K().astype(np.float32) |
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roi = warper.warpRoi(sz, K, cameras[i].R) |
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corners.append(roi[0:2]) |
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sizes.append(roi[2:4]) |
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if abs(compose_scale - 1) > 1e-1: |
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img = cv.resize(src=full_img, dsize=None, fx=compose_scale, fy=compose_scale, |
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interpolation=cv.INTER_LINEAR_EXACT) |
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else: |
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img = full_img |
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_img_size = (img.shape[1], img.shape[0]) |
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K = cameras[idx].K().astype(np.float32) |
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corner, image_warped = warper.warp(img, K, cameras[idx].R, cv.INTER_LINEAR, cv.BORDER_REFLECT) |
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mask = 255 * np.ones((img.shape[0], img.shape[1]), np.uint8) |
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p, mask_warped = warper.warp(mask, K, cameras[idx].R, cv.INTER_NEAREST, cv.BORDER_CONSTANT) |
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compensator.apply(idx, corners[idx], image_warped, mask_warped) |
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image_warped_s = image_warped.astype(np.int16) |
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dilated_mask = cv.dilate(masks_warped[idx], None) |
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seam_mask = cv.resize(dilated_mask, (mask_warped.shape[1], mask_warped.shape[0]), 0, 0, cv.INTER_LINEAR_EXACT) |
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mask_warped = cv.bitwise_and(seam_mask, mask_warped) |
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if blender is None and not timelapse: |
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blender = cv.detail.Blender_createDefault(cv.detail.Blender_NO) |
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dst_sz = cv.detail.resultRoi(corners=corners, sizes=sizes) |
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blend_width = np.sqrt(dst_sz[2] * dst_sz[3]) * blend_strength / 100 |
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if blend_width < 1: |
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blender = cv.detail.Blender_createDefault(cv.detail.Blender_NO) |
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elif blend_type == "multiband": |
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blender = cv.detail_MultiBandBlender() |
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blender.setNumBands((np.log(blend_width) / np.log(2.) - 1.).astype(np.int)) |
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elif blend_type == "feather": |
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blender = cv.detail_FeatherBlender() |
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blender.setSharpness(1. / blend_width) |
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blender.prepare(dst_sz) |
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elif timelapser is None and timelapse: |
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timelapser = cv.detail.Timelapser_createDefault(timelapse_type) |
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timelapser.initialize(corners, sizes) |
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if timelapse: |
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ma_tones = np.ones((image_warped_s.shape[0], image_warped_s.shape[1]), np.uint8) |
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timelapser.process(image_warped_s, ma_tones, corners[idx]) |
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pos_s = img_names[idx].rfind("/") |
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if pos_s == -1: |
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fixed_file_name = "fixed_" + img_names[idx] |
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else: |
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fixed_file_name = img_names[idx][:pos_s + 1] + "fixed_" + img_names[idx][pos_s + 1:] |
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cv.imwrite(fixed_file_name, timelapser.getDst()) |
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else: |
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blender.feed(cv.UMat(image_warped_s), mask_warped, corners[idx]) |
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if not timelapse: |
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result = None |
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result_mask = None |
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result, result_mask = blender.blend(result, result_mask) |
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cv.imwrite(result_name, result) |
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zoom_x = 600.0 / result.shape[1] |
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dst = cv.normalize(src=result, dst=None, alpha=255., norm_type=cv.NORM_MINMAX, dtype=cv.CV_8U) |
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dst = cv.resize(dst, dsize=None, fx=zoom_x, fy=zoom_x) |
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cv.imshow(result_name, dst) |
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cv.waitKey() |
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|
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print("Done") |
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|
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|
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if __name__ == '__main__': |
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print(__doc__) |
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main() |
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cv.destroyAllWindows()
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